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LEICA: Laplacian Eigenmaps for group ICA Decomposition of fMRI data

机译:LEICA:用于功能性MRI数据的ICA组分解的Laplacian特征图

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摘要

Independent component analysis (ICA) is a data-driven method that has been increasingly used for analyzing functional Magnetic Resonance Imaging (fMRI) data. However, generalizing ICA to multi-subject studies is non-trivial due to the high-dimensionality of the data, the complexity of the underlying neuronal processes, the presence of various noise sources, and inter-subject variability. Current group ICA based approaches typically use several forms of the Principal Component Analysis (PCA) method to extend ICA for generating group inferences. However, linear dimensionality reduction techniques have serious limitations including the fact that the underlying BOLD signal is a complex function of several nonlinear processes. In this paper, we propose an effective non-linear ICA-based model for extracting group-level spatial maps from multi-subject fMRI datasets. We use a non-linear dimensionality reduction algorithm based on Laplacian eigenmaps to identify a manifold subspace common to the group, such that this mapping preserves the correlation among voxels’ time series as much as possible. These eigenmaps are modeled as linear mixtures of a set of group-level spatial features, which are then extracted using ICA. The resulting algorithm is called LEICA (Laplacian Eigenmaps for group ICA decomposition). We introduce a number of methods to evaluate LEICA using 100-subject resting state and 100-subject working memory task fMRI datasets from the Human Connectome Project (HCP). The test results show that the extracted spatial maps from LEICA are meaningful functional networks similar to those produced by some of the best known methods. Importantly, relative to state-of-the-art methods, our algorithm compares favorably in terms of the functional cohesiveness of the spatial maps generated, as well as in terms of the reproducibility of the results.
机译:独立成分分析(ICA)是一种数据驱动的方法,已越来越多地用于分析功能性磁共振成像(fMRI)数据。但是,由于数据的高维性,潜在神经元过程的复杂性,各种噪声源的存在以及受试者间的变异性,将ICA推广到多受试者研究并非易事。当前基于组ICA的方法通常使用几种形式的主成分分析(PCA)方法来扩展ICA以生成组推论。但是,线性降维技术具有严重的局限性,包括以下事实:潜在的BOLD信号是几个非线性过程的复杂函数。在本文中,我们提出了一种有效的基于ICA的非线性模型,用于从多对象fMRI数据集中提取组级空间图。我们使用基于拉普拉斯特征图的非线性降维算法来识别该组共有的流形子空间,从而使该映射尽可能保留体素时间序列之间的相关性。这些特征图被建模为一组组级空间特征的线性混合,然后使用ICA进行提取。所得算法称为LEICA(用于组ICA分解的拉普拉斯特征图)。我们引入了许多方法来评估LEICA,该方法使用了来自Human Connectome Project(HCP)的100个受试者的静止状态和100个受试者的工作记忆任务fMRI数据集。测试结果表明,从LEICA提取的空间图是有意义的功能网络,类似于通过某些最著名的方法生成的网络。重要的是,相对于最新方法,我们的算法在生成的空间图的功能凝聚力以及结果的可重复性方面均具有可比性。

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